Classificação de Gêneros Musicais Latinos e suas Emoções: Abordagens Bayesiana e Fuzzy
DOI:
https://doi.org/10.5540/tema.2017.018.03.369Keywords:
gêneros musicais, classificação fuzzy, classificação Bayesiana.Abstract
Este trabalho tem como objetivo classificar automaticamente gêneros musicais latinos considerando suas emoções predominantes. Os métodos propostos são baseados no método de classificação fuzzy e no método de classificação Bayesiano, o qual utiliza o algoritmo BayesRule. Estas duas metodologias extraem regras de classificação linguísticas, o que possibilita que seja feita uma comparação entre os resultados obtidos, além da classificação inteligente do conjunto de dados considerando incertezas e fusões entre os gêneros musicais.References
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